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Automating the process of identifying the preferred representational system in Neuro Linguistic Programming using Natural Language Processing

机译:自然语言处理自动化识别神经语言编程中的优选代表系统的过程

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Neuro Linguistic Programming (NLP) is a methodology used for recognition of human behavioral patterns and modification of the behavior. A significant part of this process is influenced by the theory of representational systems which equates to the five main senses. The preferred representational system of an individual can explain a large part of exhibited behaviors and characteristics. There are different methods to recognize the representational systems, one of which is to investigate the sensory-based words in the used language during the conversation. However, there are difficulties during this process since there is not a single reference method used for identification of representational systems and existing ones are subject to human interpretations. Some human errors like lack of experience, personal judgment, different levels of skill and personal mistakes may also affect the accuracy and reliability of the existing methods. This research aims to apply a new approach that is to automate the identification process in order to remove human errors, thereby increasing the accuracy and precision. Natural Language Processing has been used for automating this process, and an intelligent software has been developed to identify the preferred representational system with increased accuracy and reliability. This software has been tested and compared to human identification of representational systems. The results of the software are similar to a NLP practitioner, and the software responds more accurately than a human practitioner in various parts of the process. This novel methodology will assist the NLP practitioners to obtain an improved understanding of their clients' behavioral patterns and the associated cognitive and emotional processes.
机译:神经语言编程(NLP)是一种用于识别人类行为模式和对行为的修改的方法。该过程的一部分受到代表系统理论的影响,这相当于五个主要感官。个人的优选代表系统可以解释表现出的行为和特征的很大一部分。有不同的方法来识别代表系统,其中一个是在对话期间调查在使用的语言中的基于感官的单词。然而,在该过程中存在困难,因为没有用于识别代表系统的单个参考方法,并且现有的方法受到人类解释。一些人为错误,如缺乏经验,个人判断,不同水平的技能和个人错误也可能影响现有方法的准确性和可靠性。该研究旨在应用一种新的方法,即自动化识别过程以便去除人为错误,从而提高准确性和精度。自然语言处理已被用于自动化该过程,并且已经开发了一种智能软件来识别优选的代表系统,具有提高的准确性和可靠性。该软件已经过测试并与人类识别代表系统进行了测试。该软件的结果类似于NLP从业者,并且软件比过程的各个部分中的人类从业者更准确地响应。这种新的方法将协助NLP从业者获得对其客户行为模式和相关的认知和情绪过程的改进了解。

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